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These are the Phase II tasks most helpful to the preparation work we need to do for AGU December, and they are logically sequenced after the recent several months of work on Elm/xarray_filters/Earthio to separate ML from GIS.
Milestone 2 Task 2: Hierarchical Modeling
Milestone 2 Task 3: Vote Count Ensemble Averaging
Milestone 6 Task 1: Support for xarray’s multi-file datasets
Milestone 6 Task 2: Feature engineering options for 3-D and 4-D data
The following sections have a checklist of issues we should aim to finish before AGU December (the conference is the 11th to 15th week). Some of the listed issues are already completed or partially completed by PR #192 and related PRs in xarray_filters/Earthio
Elm
Docs / cleanup / promotion of Elm and related tools
Any other issues labeled with "documentation" are reasonable but our time on example notebooks between now and December should be NLDAS oriented, not the various other example data sets mentioned on those issues
Another task (assigned to me) for now until AGU is the improvement of Elm-Earthio-NLDAS. I will use that repo as a demo repo for discussion / sharing at AGU.
Elm Quarter 3, 2017 Priorities
These are the Phase II tasks most helpful to the preparation work we need to do for AGU December, and they are logically sequenced after the recent several months of work on Elm/xarray_filters/Earthio to separate ML from GIS.
The following sections have a checklist of issues we should aim to finish before AGU December (the conference is the 11th to 15th week). Some of the listed issues are already completed or partially completed by PR #192 and related PRs in xarray_filters/Earthio
Elm
Docs / cleanup / promotion of Elm and related tools
ML improvements
avoid_repeated_params
necessary? Isavoid_repeated_params
necessary? #203SklearnBase
RefactorSklearnBase
#197client_context
- just use Dask.Client ready related-to-dask-xarray Removeclient_context
- just use Dask.Client #122Data structure improvements for ML related to this (see also this long term epic 202)
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